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A Hybrid Deterministic/Monte Carlo Method for Solving the k-Eigenvalue Problem with a Comparison to Analog Monte Carlo Solutions

机译:确定性/蒙特卡罗混合方法求解k特征值问题并与模拟蒙特卡洛解决方案进行比较

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In this article we present a hybrid deterministic/Monte Carlo algorithm for computing the dominant eigenvalue/eigenvector pair for the neutron transport k-eigenvalue problem in multiple space dimensions. We begin by deriving the Nonlinear Diffusion Acceleration method (Knoll, Park, and Newman, 2011; Park, Knoll, and Newman, 2012) for the k-eigenvalue problem. We demonstrate that we can adapt the algorithm to utilize a Monte Carlo simulation in place of a deterministic transport sweep. We then show that the new hybrid method can be used to solve a two-group, two dimensional eigenvalue problem. The hybrid method is competitive with analog Monte Carlo in terms of number of particle flights required to compute the eigenvalue; however it produces a much less noisy eigenvector and fission source distribution. Furthermore, we show that we can reduce the error induced by the discretization of the low-order system by appropriate refinement of the mesh.
机译:在本文中,我们提出了一种混合确定性/蒙特卡罗算法,用于计算多维空间中的中子输运k特征值问题的主导特征值/特征向量对。我们首先推导非线性扩散加速方法(Knoll,Park和Newman,2011; Park,Knoll和Newman,2012)来解决k特征值问题。我们证明了我们可以调整算法,以利用Monte Carlo模拟代替确定性的运输扫描。然后,我们证明了新的混合方法可用于解决二维二维特征值问题。在计算特征值所需的粒子飞行数量方面,混合方法与模拟蒙特卡洛方法竞争。但是,它产生的噪声特征向量和裂变源分布要少得多。此外,我们表明,通过适当地细化网格,可以减少低阶系统离散化引起的误差。

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